WorldPop, Geography and Environment, University of Southampton, Southampton, UK.
Flowminder Foundation, Stockholm, Sweden.
Sci Rep. 2016 Jul 13;6:29628. doi: 10.1038/srep29628.
The long-term goal of the global effort to tackle malaria is national and regional elimination and eventually eradication. Fine scale multi-temporal mapping in low malaria transmission settings remains a challenge and the World Health Organisation propose use of surveillance in elimination settings. Here, we show how malaria incidence can be modelled at a fine spatial and temporal resolution from health facility data to help focus surveillance and control to population not attending health facilities. Using Namibia as a case study, we predicted the incidence of malaria, via a Bayesian spatio-temporal model, at a fine spatial resolution from parasitologically confirmed malaria cases and incorporated metrics on healthcare use as well as measures of uncertainty associated with incidence predictions. We then combined the incidence estimates with population maps to estimate clinical burdens and show the benefits of such mapping to identifying areas and seasons that can be targeted for improved surveillance and interventions. Fine spatial resolution maps produced using this approach were then used to target resources to specific local populations, and to specific months of the season. This remote targeting can be especially effective where the population distribution is sparse and further surveillance can be limited to specific local areas.
全球抗击疟疾的长期目标是实现国家和地区消除疟疾,并最终根除疟疾。在疟疾低传播地区进行精细尺度、多时相的测绘仍然是一个挑战,世界卫生组织提议在消除疟疾地区使用监测手段。在这里,我们展示了如何利用医疗机构数据,以精细的时空分辨率来建模疟疾发病率,以帮助将监测和控制工作重点放在未就诊的人群上。我们以纳米比亚为例,通过贝叶斯时空模型,根据寄生虫学确诊的疟疾病例来预测疟疾的发病率,并纳入了与医疗服务利用相关的指标以及与发病率预测相关的不确定性度量。然后,我们将发病率估计值与人口地图相结合,以估计临床负担,并展示这种映射方法在确定需要改进监测和干预的地区和季节方面的优势。使用这种方法生成的精细空间分辨率地图随后被用于针对特定的本地人群和特定的季节月份来分配资源。在人口分布稀疏且进一步监测仅限于特定的局部地区的情况下,这种远程定位尤其有效。